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Downscaling Satellite Retrieved Soil Moisture Using Regression Tree‐Based Machine Learning Algorithms Over Southwest France

机译:透露卫星在西南部法国西南部的回归基础机器学习算法中检索土壤水分

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Satellite retrieved soil moisture (SM) shows great potential in hydrological, meteorological, ecological, and agricultural applications, while the coarse resolution limits its utilization in regional scale. The regression tree‐based machine learning algorithms reveal promising capability in SM downscaling. However, it lacks systematic study dedicated to intercomparisons of algorithms to explicitly illuminate their characteristics. In this study, comparisons are made to systematically evaluate performances of classification and regression tree (CART), random forest (RF), gradient boost decision tree (GBDT), and extreme gradient boost (XGB) in Soil Moisture Active Passive (SMAP) SM downscaling in southwest France. The results show that the four algorithms downscaled SM are capable of capturing spatial distribution features of the original SMAP SM. The downscaled regions with favorable accuracy are mostly situated in the dominant Mediterranean climate zone with moderate vegetation coverage and mild topography variation. The best results are obtained by GBDT in grassland with R value of 0.77 and ubRMSE value of 0.04?m3/m3. The RF and XGB also achieve good performances. On the whole, the GBDT approach is robust and reliable, which could downscale SM with superior correlation and smaller bias than the others. Besides, it achieves higher accuracy than the original SMAP in grassland and shrubland. The feature importance index of each explainable variable fluctuates regularly among different seasons and models. This study proves the outstanding performance of GBDT in SMAP SM downscaling and is expected to act as a valuable reference for studies focusing on SM scale conversion algorithms.
机译:卫星检索土壤水分(SM)显示出水文,气象,生态和农业应用的巨大潜力,而粗糙分辨率限制了其在区域规模中的利用率。基于回归的基于树的机器学习算法显示了SM次要的有希望的能力。然而,它缺乏专用于算法的离法的系统研究,以明确照亮其特征。在本研究中,使比较系统地评估分类和回归树(推车),随机林(RF),渐变升压决策树(GBDT)和极端梯度升压(XGB)在土壤水分活性(SMAP)SM中的表演法国西南部镇压。结果表明,四种算法较低的SM能够捕获原始SMAP SM的空间分布特征。具有良好准确性的较低的地区主要位于主导地中海气候区,具有中等植被覆盖和温和地形变化。最佳结果是由GBDT在草地上获得,R值为0.77和ubrmse值0.04?m3 / m3。 RF和XGB也实现了良好的表现。总的来说,GBDT方法是坚固可靠的,可以比其他方式较高的相关性和偏差较小。此外,它比草原和灌木丛中的原始湿度达到更高的准确性。每个可解释变量的特征重要性指数在不同的季节和模型之间定期波动。本研究证明了GBDT在SMAP SM级别中的出色表现,预计将作为关注SM规模转换算法的研究的有价值的参考。

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